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    Please use this identifier to cite or link to this item: http://ir.lib.ncu.edu.tw/handle/987654321/46474


    Title: 非線性偵測技術應用於通道等化與多天線系統;Nonlinear Detection Techniques Applied to Channel Equalization and Multi-Antenna Systems
    Authors: 張耀仁;Yao-Jen Chang
    Contributors: 通訊工程研究所
    Keywords: 類神經網路;數位通訊;波束形成;調適性等化器;neural network;digital communications;beamforming;Adaptive equalizer
    Date: 2011-01-02
    Issue Date: 2011-06-04 16:07:00 (UTC+8)
    Publisher: 國立中央大學
    Abstract: 由於非線性偵測器的訊號分類能力勝過傳統的偵測器,所以很多非線性偵測器(如:輻射基底網路(radial basis function, RBF) 和模糊類神經網路(fuzzy neural network, FNN))已被應用至通道等化與多根天線系統等。典型RBF偵測器可利用叢聚演算法(如:敵人懲罰競爭學習(rival penalized competitive learning, RPCL))去訓練其參數。但RPCL常伴隨掉落至局部解與緩慢收斂等問題,因此本論文第二章便提出一個新穎的密度評估(density-evaluated, DE) 機制去改進RPCL的演算過程。所提出的DE機制會計算每個中心點的資料密度,並藉由資料密度來評估是否需要刪除所對應的中心點,使RPCL可達到快速收斂的結果,我們會使用一個非線性通道模型去展示所提出的DE-RPCL演算法。另外,RBF偵測器也已成功應用至決策迴授等化器(decision feedback equalizer, DFE),但RBF的隱藏節點個數會隨著等化器階數或通道階數的增加而呈指數增加,這會增加RBF之複雜度,所以本論文第三章提出一個新穎快速自我建構模糊類神經網路(fast self-constructing FNN, FSCFNN)決策迴授等化器,其由多個FSCFNN偵測器所組成,但每次偵測僅啟動一個FSCFNN。由於FSCFNN的隱藏節點個數會藉由設定條件去限制其大小,所以FSCFNN DFE可控制在較RBF DFE還要小的複雜度。此外,第四章我們也提出將SCFNN偵測器加入至多根天線系統,並藉由陣列輸入訊號空間的對稱特性,提出所謂的簡化型對稱自我建構模糊類神經網路(reduced symmetric SCFNN, RS-SCFNN)波束形成器。模擬結果顯示RS-SCFNN能大幅勝過傳統調適性波束形成器,且RS-SCFNN能根據現在的通訊環境彈性且自動地決定隱藏節點的個數。 Due to the better classification capability than the traditional linear detectors, many nonlinear detectors, such as radial basis function (RBF) and fuzzy neural network (FNN), have been applied to channel equalization and multi-antenna systems. Classically, an RBF detector is trained with a clustering algorithm like rival penalized competitive learning (RPCL). However, RPCL and its improved versions are always accompanied by problems of falling in local optima and slow learning speed. Thus, the first part of this dissertation focuses on proposing a novel mechanism to prune the RPCL’s structure directly by evaluating the data density of each center unit. An ordinary channel model is simulated in this part to demonstrate the proposed clustering. The number of hidden nodes of the RBF decision feedback equalizer (DFE) can be obtained from one or two pre-known information, i.e., equalizer order and channel order. However, if the equalizer order or channel order increases, the number of hidden nodes in RBF DFE grows exponentially, so do the computation and hardware complexity. In the second part of this dissertation, a novel DFE is thus proposed by using a fast self-constructing FNN (FSCFNN) detector. The proposed DFE structure is composed of several FSCFNNs, each of which corresponding to one feedback input vector. Because the feedback input vector occurs independently, only one FSCFNN detector is activated to decide the estimated symbol. Specially, all of the hidden nodes in each FSCFNN detector are flexibly determined by the proposed learning algorithm, and can be restricted to a low amount due to setting conditions to constrain the size of structure. Therefore, the proposed FSCFNN DFE results in less complexity compared to RBF DFE. Moreover, in this dissertation, we also propose to incorporate an SCFNN-related detector into multi-antenna systems with the aid of a symmetric property of array input signal space. This novel adaptive beamformer is called reduced symmetric SCFNN (RS-SCFNN) beamformer. The simulation results are done in the rank-deficient multi-antenna systems and have shown that the adaptive RS-SCFNN beamformer extremely outperforms the classical adaptive beamformers. Besides, the proposed SCFNN-related adaptive beamformers can flexibly and automatically determine different numbers of hidden nodes for various signal-to-noise (SNR) environments, but the RBF-based adaptive beamformer must assign hidden node’s numbers as a fix constant for various SNR environments before learning.
    Appears in Collections:[Graduate Institute of Communication Engineering] Electronic Thesis & Dissertation

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